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Application of support vector machine for pattern classification of active thermometry-based pipeline scour monitoring

机译:支持向量机在基于主动热量的管道冲刷监控模式分类的应用

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摘要

Pipeline scour monitoring is becoming one of the key requirements in oil and gas industry. To implement scour monitoring for offshore pipeline, a monitoring system that based on active thermometry is proposed. Our previous investigations have shown that the system has provided many advantages over traditional scour monitoring methods. In this paper, a novel scour automatic detection scheme based on nonlinear curve fitting and support vector machine (SVM) is proposed to realize automatic diagnosis of pipeline scour. On account of the varied heat transfer patterns of a line heat source in sediment and water scenarios, the experimental temperature profiles are nonlinearly fitted to their theoretical models. Features extracted by nonlinear curve fitting can dramatically reduce the dimensions of the data. Subsequently, the extracted features are inputted into SVM classifier to judge where the pipeline is exposed to water or buried in the sediment. In order to evaluate the performance of SVM, SVM with different kernel functions are compared with the back-propagation neural networks, which is the most popular neural network for pattern recognition and classification. Results show that the SVM model with radial basis function kernel outperformed other classification models. Finally, aiming to obtain the optimal heating time of the system, the optimal SVM model is employed to recognize datasets with different heating time. Copyright (c) 2014 John Wiley & Sons, Ltd.
机译:管道冲刷监测正成为石油和天然气行业的关键要求之一。为近海管线实施冲刷监测,提出了一种基于有源温度测量的监控系统。我们以前的调查表明,该系统提供了与传统冲刷监控方法的许多优势。本文提出了一种基于非线性曲线配件和支持向量机(SVM)的新型冲刷自动检测方案,以实现管道冲刷的自动诊断。由于沉积物和水景中的线热源的变化传热模式,实验温度型材是非线性安装在其理论模型中。非线性曲线拟合提取的特征可以显着降低数据的尺寸。随后,将提取的特征输入到SVM分类器中以判断管道暴露在水中或埋在沉积物中的地方。为了评估SVM的性能,将具有不同内核功能的SVM与后传播神经网络进行比较,这是用于模式识别和分类的最受欢迎的神经网络。结果表明,具有径向基函数内核的SVM模型优于其他分类模型。最后,旨在获得系统的最佳加热时间,采用最佳SVM模型来识别具有不同加热时间的数据集。版权所有(c)2014 John Wiley&Sons,Ltd。

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